Pregled bibliografske jedinice broj: 1209342
Feature Modeling for Interpretable Low Back Pain Classification Based on Surface EMG
Feature Modeling for Interpretable Low Back Pain Classification Based on Surface EMG // IEEE Access, 10 (2022), 73702-73727 doi:10.1109/access.2022.3190102 (međunarodna recenzija, članak, znanstveni)
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Naslov
Feature Modeling for Interpretable Low Back Pain
Classification Based on Surface EMG
Autori
Srhoj-Egekher, Vedran ; Cifrek, Mario ; Peharec, Stanislav
Izvornik
IEEE Access (2169-3536) 10
(2022);
73702-73727
Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni
Ključne riječi
Chronic low back pain ; clinical decision support systems ; feature modeling ; interpretability ; machine learning ; patients differentiation ; radiculopathy ; surface electromyography
Sažetak
Low back pain (LBP) is a global health-problem phenomenon. Most patients are categorized as non- specific, thus requiring an individualized approach which still poses a major challenge. In this paper, sEMG recordings from two pairs of lumbar muscle sites were collected during an isometric trunk extension exercise. Ninety-one subjects were included in the study ; 29 patients with non-specific chronic LBP (CLBP), 25 patients with radiculopathy (RLBP), and 37 control healthy subjects (HS). Six best-performing time-domain raw features were employed to model contextual secondary feature groups. Neuromuscular LBP characteristics were described with coordination, co-activation, trends, and fatigue measures. Altogether, a set of 327 secondary features was created where inputs into the classification models were further refined by employing neighborhood component analysis (NCA). NCA effectively reduced the number of features (<20 components), alongside preserving them in the original interpretable domain. A set of 23 different classifiers was employed and explored, resulting in classification accuracy of 0.94 for HS vs. LBP, 0.89 for HS vs. CLBP, 0.98 for HS vs. RLBP, and 0.89 for CLBP vs. RLBP differentiation. High median precision (0.97) and sensitivity (0.99) across all classifiers for HS vs. RLBP differentiation was obtained, with only three feature components utilized (out of 327). Support vector machines (SVM) and k -nearest neighbor ( k NN) based classifiers consistently demonstrated best classification results. Different profiles of CLBP patients were presented and discussed. The suggested method demonstrated the potential for patients’ subgrouping and subsequent more individualized rehabilitation treatments, backed by medical interpretations through feature modeling.
Izvorni jezik
Engleski
Znanstvena područja
Elektrotehnika, Računarstvo, Kliničke medicinske znanosti
POVEZANOST RADA
Ustanove:
Fakultet elektrotehnike i računarstva, Zagreb,
Medicinski fakultet, Rijeka,
Fakultet zdravstvenih studija u Rijeci
Citiraj ovu publikaciju:
Časopis indeksira:
- Current Contents Connect (CCC)
- Web of Science Core Collection (WoSCC)
- Science Citation Index Expanded (SCI-EXP)
- SCI-EXP, SSCI i/ili A&HCI
- Scopus